id stringlengths 16 16 | title stringlengths 10 128 | authors stringlengths 10 153 | year stringlengths 4 14 | doi stringlengths 0 35 |
|---|---|---|---|---|
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63c8c8e2c1c19bdc | Algorithms with predictions | Michael Mitzenmacher; Sergei Vassilvitskii | 2021 | |
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2afe80691c4a168d | Faster matchings via learned duals | Michael Dinitz; Sungjin Im; Thomas Lavastida; Benjamin Moseley; Sergei Vassilvitskii | 2021 | |
8c6e996915f58146 | Semi-bandit optimization in the dispersed setting | Maria-Florina Balcan; Travis Dick; Wesley Pegden | 2020 | |
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